2017
DOI: 10.18865/ed.27.2.95
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Big Data Science: Opportunities and Challenges to Address Minority Health and Health Disparities in the 21st Century

Abstract: <p class="Default">Addressing minority health and health disparities has been a missing piece of the puzzle in Big Data science. This article focuses on three priority opportunities that Big Data science may offer to the reduction of health and health care disparities. One opportunity is to incorporate standardized information on demographic and social determinants in electronic health records in order to target ways to improve quality of care for the most disadvantaged popula­tions over time. A second o… Show more

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Cited by 171 publications
(159 citation statements)
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“…32 RTRN is coordinating efforts to leverage these population health resources by deploying informatics tools such as i2b2, 9 that will support data science initiatives, and accelerate research on the science of health disparities. 33…”
Section: Discussionmentioning
confidence: 99%
“…32 RTRN is coordinating efforts to leverage these population health resources by deploying informatics tools such as i2b2, 9 that will support data science initiatives, and accelerate research on the science of health disparities. 33…”
Section: Discussionmentioning
confidence: 99%
“…While there is increasing support from funding bodies for research on the social and ethical implications of AI [14][15][16][17], to date there has been limited attention by the ethics research community on AI within the field of health. The health sector, however, is a growing area of AI research, development and deployment, with AI holding promise for the promotion of healthy behaviours; the detection and early intervention of infectious illnesses and environmental health threats; and the prevention, diagnosis, and treatment of disease [18][19][20]. These and other AI applications have the potential to aid in the realization of the United Nations Sustainable Development Goals (SDGs), including SDG 3.3 [21] to achieve universal health coverage, and SDG 10 [22] to reduce inequality within and between countries.…”
Section: Introductionmentioning
confidence: 99%
“…The NHANES accelerometer data described above, with its rich array of socioeconomic identifiers, also could be used to identify disparities and to test disparity hypotheses related to nutrition and health, including reliability between big data and self-reports. Although only few studies have successfully used big data sources to ad-vance health disparity research, 18 data mining and machine learning (ML), coupled with advances in hardware technology, signal more opportunities for using big data in translational health disparity research.…”
Section: Introductionmentioning
confidence: 99%